Calibration: the Achilles heel of predictive analytics
KU Leuven · University of Aberdeen · +2 more institutions
Abstract
The assessment of calibration performance of risk prediction models based on regression or more flexible machine learning algorithms receives little attention. MAIN TEXT: Herein, we argue that this needs to change immediately because poorly calibrated algorithms can be misleading and potentially harmful for clinical decision-making. We summarize how to avoid poor calibration at algorithm development and how to assess calibration at algorithm validation, emphasizing balance between model complexity and the available sample size. At external validation, calibration curves require sufficiently large samples. Algorithm updating should be considered for appropriate support of clinical practice.
Efforts are required to avoid poor calibration when developing prediction models, to evaluate calibration when validating models, and to update models when indicated. The ultimate aim is to optimize the utility of predictive analytics for shared decision-making and patient counseling.
Citation impact
- FWCI
- 37.65
- Percentile
- 100%
- References
- 39
Authors
6- OBOn behalf of Topic Group ‘Evaluating diagnostic tests and prediction models’ of the STRATOS initiativeCorresponding
KU Leuven
- BVBen Van Calster
University of Aberdeen, Leiden University Medical Center, KU Leuven
- DJDavid J. McLernon
University of Aberdeen, Leiden University Medical Center
- MVMaarten van Smeden
Leiden University Medical Center, Maastricht University
- LWLaure Wynants
Leiden University Medical Center, Maastricht University, KU Leuven
Topics & keywords
- Calibration
- Machine learning
- Medicine
- Predictive analytics
- Heel
- Analytics
- Artificial intelligence
- Computer science